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A self-adaptive chaos and Kalman filter-based particle swarm optimization for economic dispatch problem

机译:自适应混沌和基于卡尔曼的基于滤波器的粒子群优化,用于经济派遣问题

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摘要

It is challenging to obtain global minima for practical economic dispatch (ED) problem with heavy constraints. Traditional PSO is easy to fall into local optimum when it is applied to solve the ED problem; therefore, in this paper, an efficient self-adaptive chaos and Kalman filter-based particle swarm optimization algorithm (SCKF-PSO) is proposed to solve economic dispatch (ED) problem while considering minimizing the cost with various equality and inequality constraints. The algorithm adopts both the learning mechanism of PSO and the estimation strategy of Kalman filter to update the position of the particle, which can improve the convergence performance. Moreover, a novel self-adaptive chaotic strategy is utilized to increase the diversity of the population. The feasibility of SCKF-PSO algorithm is illustrated by testing on several benchmark functions and three different ED problems in power systems. The simulation results show that compared with previous approaches reported in the literature, the proposed SCKF-PSO can obtain higher quality solutions with stability and efficiency in the ED problem.
机译:获得巨大限制的实际经济调度(ED)问题是挑战。当它应用解决ED问题时,传统的PSO易于陷入本地最佳状态;因此,在本文中,提出了一种有效的自适应混沌和基于卡尔曼滤波器的粒子群优化算法(SCKF-PSO),以解决经济调度(ED)问题,同时考虑最大限度地减少各种平等和不等式约束的成本。该算法采用PSO的学习机制和卡尔曼滤波器的估计策略来更新粒子的位置,可以提高收敛性能。此外,利用新的自适应混沌策略来增加人口的多样性。通过在多个基准函数和电力系统中的三种不同ED问题上测试来说明SCKF-PSO算法的可行性。仿真结果表明,与文献中报道的先前方法相比,所提出的SCKF-PSO可以获得更高质量的解决方案,在ED问题中具有稳定性和效率。

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